Attentive vision relates to the isolation of objects of interest to be able to
advance them to yet higher level vision systems such as object tracking and object
recognition. Since the task is related to object segmentation from the background it will
require the application of local measures of fractality in phase space. These local
measures will be used to identify the regions of phase space that correspond to
interesting behavior such as a moving object or contextual change. Once these regions
in phase space are identified the vision system will use the mapping from phase space to
the original image space to identify the pixels that correspond to the object of interest.
This is markedly different from traditional methods such as Optical Flow and Gaussian
Mixture Models where the decisions of important change are made in the grayscale
space of the original images, yet this space is corrupted by spatio-temporal illumination
changes. The performance of the chaos-based approach is demonstrated both for
motion-based segmentation and also contextual change-based segmentation.
Keywords: Attentive vision, motion segmentation, change-based segmentation,
optical flow, orbit compaction.